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[TF FE] Support complex tensors for OnesLike operation #23445

Merged
merged 10 commits into from
Mar 21, 2024
26 changes: 23 additions & 3 deletions src/frontends/tensorflow_common/src/op/ones_like.cpp
Original file line number Diff line number Diff line change
Expand Up @@ -3,9 +3,11 @@
//

#include "common_op_table.hpp"
#include "helper_ops/complex_type_mark.hpp"
#include "openvino/op/broadcast.hpp"
#include "openvino/op/concat.hpp"
#include "openvino/op/constant.hpp"
#include "openvino/op/gather.hpp"
#include "openvino/op/shape_of.hpp"
#include "openvino/op/squeeze.hpp"
#include "utils.hpp"
Expand All @@ -19,8 +21,28 @@ namespace tensorflow {
namespace op {

OutputVector translate_ones_like_op(const NodeContext& node) {
default_op_checks(node, 1, {"OnesLike"});
default_op_checks(node, 1, {"OnesLike"}, true);
auto x = node.get_input(0);
auto complex_type_mark_x = as_type_ptr<ComplexTypeMark>(x.get_node_shared_ptr());
if (complex_type_mark_x) {
x = complex_type_mark_x->input_value(0);
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auto gather_index_real = make_shared<v0::Constant>(element::i32, Shape{1}, 0);
auto minus_one = make_shared<v0::Constant>(element::i32, Shape{1}, -1);
auto x_real = make_shared<v8::Gather>(x, gather_index_real, minus_one)->output(0);
Output<Node> shape_of_real = make_shared<v3::ShapeOf>(x_real, element::i32);

auto one_const = create_same_type_const_scalar<int32_t>(x_real, 1);
Output<Node> ones_like = make_shared<v3::Broadcast>(one_const, shape_of_real);

auto zero_const = create_same_type_const_scalar<int32_t>(x_real, 0);
Output<Node> zeros_like = make_shared<v3::Broadcast>(zero_const, shape_of_real);
auto result = make_shared<v0::Concat>(OutputVector{ones_like, zeros_like}, -1);
set_node_name(node.get_name(), result);
auto ones_like_complex = make_shared<ComplexTypeMark>(result, complex_type_mark_x->get_complex_part_type());

return {ones_like_complex};
}

Output<Node> shape_of = make_shared<v3::ShapeOf>(x, element::i32);
auto one_const = create_same_type_const_scalar<int32_t>(x, 1);

Expand All @@ -35,11 +57,9 @@ OutputVector translate_ones_like_op(const NodeContext& node) {
// remove extra dimension by squeezing
auto zero_dim_ind = make_shared<v0::Constant>(element::i32, Shape{1}, 0);
ones_like = make_shared<v0::Squeeze>(ones_like, zero_dim_ind);

set_node_name(node.get_name(), ones_like.get_node_shared_ptr());
return {ones_like};
}

} // namespace op
} // namespace tensorflow
} // namespace frontend
Expand Down
45 changes: 45 additions & 0 deletions tests/layer_tests/tensorflow_tests/test_tf_OnesLike.py
Original file line number Diff line number Diff line change
Expand Up @@ -43,3 +43,48 @@ def test_ones_like(self, params, ie_device, precision, ir_version, temp_dir,
self._test(*self.create_ones_like_net(**params),
ie_device, precision, ir_version, temp_dir=temp_dir,
use_legacy_frontend=use_legacy_frontend)

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class TestComplexOnesLike(CommonTFLayerTest):
def _prepare_input(self, inputs_info):
rng = np.random.default_rng()
assert 'x_real:0' in inputs_info
assert 'x_imag:0' in inputs_info
x_real_shape = inputs_info['x_real:0']
x_imag_shape = inputs_info['x_imag:0']
inputs_data = {}
inputs_data['x_real:0'] = 4 * rng.random(x_real_shape).astype(self.x_type) - 2
inputs_data['x_imag:0'] = 4 * rng.random(x_imag_shape).astype(self.x_type) - 2
return inputs_data

def create_complex_ones_like_net(self, x_shape, x_type):
self.x_type = x_type
tf.compat.v1.reset_default_graph()
# Create the graph and model
with tf.compat.v1.Session() as sess:
x_real = tf.compat.v1.placeholder(tf.dtypes.as_dtype(x_type), x_shape, 'x_real')
x_imag = tf.compat.v1.placeholder(tf.dtypes.as_dtype(x_type), x_shape, 'x_imag')
x_complex = tf.raw_ops.Complex(real=x_real, imag=x_imag)
ones_like = tf.raw_ops.OnesLike(x=x_complex)
real = tf.raw_ops.Real(input=ones_like)
img = tf.raw_ops.Imag(input=ones_like)
tf.compat.v1.global_variables_initializer()
tf_net = sess.graph_def

return tf_net, None

test_data_basic = [
dict(x_shape=[], x_type=np.float32),
dict(x_shape=[2], x_type=np.float32),
dict(x_shape=[2, 3, 4], x_type=np.float32),
dict(x_shape=[1, 4, 3, 1], x_type=np.float32),
]

@pytest.mark.parametrize("params", test_data_basic)
@pytest.mark.precommit_tf_fe
@pytest.mark.nightly
def test_complex_ones_like(self, params, ie_device, precision, ir_version, temp_dir,
use_legacy_frontend):
self._test(*self.create_complex_ones_like_net(**params),
ie_device, precision, ir_version, temp_dir=temp_dir,
use_legacy_frontend=use_legacy_frontend)
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